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Econometric estimation with high-dimensional moment equalities

机译:具有高维矩等式的计量经济学估计

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摘要

We consider a nonlinear structural model in which the number of moments is not limited by the sample size. The econometric problem here is to estimate and perform inference on a finite-dimensional parameter. To handle the high dimensionality, we must systematically choose a set of informative moments; in other words, delete the uninformative ones. In nonlinear models, a consistent estimator is a prerequisite for moment selection. We develop in this paper a novel two-step procedure. The first step achieves consistency in high-dimensional asymptotics by relaxing the moment constraints of empirical likelihood. Given the consistent estimator, in the second step we propose a computationally efficient algorithm to select the informative moments from a vast number of candidate combinations, and then use these moments to correct the bias of the first-step estimator. We show that the resulting second step estimator is root n-asymptotic normal, and achieves the lowest variance under a sparsity condition. To the best of our knowledge, we provide the first, asymptotically normally distributed estimator in such an environment. The new estimator is shown to have favorable finite sample properties in simulations, and it is applied to estimate an international trade model with massive Chinese datasets. (C) 2016 Elsevier B.V. All rights reserved.
机译:我们考虑一个非线性结构模型,其中矩数不受样本大小的限制。这里的计量经济学问题是估计并执行有限维参数的推断。为了处理高维度,我们必须系统地选择一组有用的信息;换句话说,删除不相关的内容。在非线性模型中,一致的估计量是矩选择的前提。我们在本文中开发了一种新颖的两步过程。第一步通过放宽经验似然的矩约束来实现高维渐近性的一致性。给定一致的估计量,在第二步中,我们提出了一种计算有效的算法,可以从大量候选组合中选择信息矩,然后使用这些矩来校正第一步估计量的偏差。我们表明,所得的第二步估计量是根n渐近正态,在稀疏条件下达到最低方差。据我们所知,我们提供了这种环境中的第一个渐近正态分布估计量。新的估计器在模拟中显示出具有良好的有限样本属性,并用于估计具有大量中国数据集的国际贸易模型。 (C)2016 Elsevier B.V.保留所有权利。

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